textabstractWe address the problem of data-driven pattern identification and outlier detection in time series. To this end, we use singular value decomposition (SVD) which is a well-known technique to compute a low-rank approximation for an arbitrary matrix. By recasting the time series as a matrix it becomes possible to use SVD to highlight the underlying patterns and periodicities. This is done without the need for specifying user-defined parameters. From a data mining perspective, this opens up new ways of analyzing time series in a data-driven, bottom-up fashion. However, in order to get correct results, it is important to understand how the SVD-spectrum of a time series is influenced by various characteristics of the underlying signal ...
A new framework for analyzing time series data called Time Series Data Mining (TSDM) is introduced. ...
A new framework for analyzing time series data called Time Series Data Mining (TSDM) is introduced. ...
A new framework for analyzing time series data called Time Series Data Mining (TSDM) is introduced. ...
We address the problem of data-driven pattern identification and outlier detection in time series. T...
We address the problem of data-driven pattern identification and outlier detection in time series. T...
We address the problem of data-driven pattern identification and outlier detection in time series. T...
In a world replete with observations (physical as well as virtual), many data sets are represented b...
In a world replete with observations (physical as well as virtual), many data sets are represented b...
Time series classification is an important aspect of time series mining. Recently, time series class...
Over the last 15 years, singular spectrum analysis (SSA) has proven very successful. It has already ...
Singular Spectrum Analysis (SSA) is a powerful non-parametric time series technique which is finding...
Over the last 15 years, singular spectrum analysis (SSA) has proven very successful. It has already ...
Over the last 15 years, singular spectrum analysis (SSA) has proven very successful. It has already ...
Time series represent the most widely spread type of data, occurring in a myriad of application doma...
Singular spectrum analysis is a powerful non-parametric time series method that appliessingular valu...
A new framework for analyzing time series data called Time Series Data Mining (TSDM) is introduced. ...
A new framework for analyzing time series data called Time Series Data Mining (TSDM) is introduced. ...
A new framework for analyzing time series data called Time Series Data Mining (TSDM) is introduced. ...
We address the problem of data-driven pattern identification and outlier detection in time series. T...
We address the problem of data-driven pattern identification and outlier detection in time series. T...
We address the problem of data-driven pattern identification and outlier detection in time series. T...
In a world replete with observations (physical as well as virtual), many data sets are represented b...
In a world replete with observations (physical as well as virtual), many data sets are represented b...
Time series classification is an important aspect of time series mining. Recently, time series class...
Over the last 15 years, singular spectrum analysis (SSA) has proven very successful. It has already ...
Singular Spectrum Analysis (SSA) is a powerful non-parametric time series technique which is finding...
Over the last 15 years, singular spectrum analysis (SSA) has proven very successful. It has already ...
Over the last 15 years, singular spectrum analysis (SSA) has proven very successful. It has already ...
Time series represent the most widely spread type of data, occurring in a myriad of application doma...
Singular spectrum analysis is a powerful non-parametric time series method that appliessingular valu...
A new framework for analyzing time series data called Time Series Data Mining (TSDM) is introduced. ...
A new framework for analyzing time series data called Time Series Data Mining (TSDM) is introduced. ...
A new framework for analyzing time series data called Time Series Data Mining (TSDM) is introduced. ...